Abstract
An Internet of Things-based automated patient condition monitoring and detection system is discussed and built in this work. The proposed algorithm that underpins the smart-bed system is based on deep learning. The movement and posture of the patient’s body may be determined with the help of wearable sensor-based devices. In this work, an internet protocol camera device is used for monitoring the smart bed, and sensor data from five key points of the smart bed are core components of our approach. The Mask Region Convolutional Neural Network approach is used to extract data from many important areas from the body of the patient by collecting data from sensors. The distance and the time threshold are used to identify motions as being either connected with normal circumstances or uncomfortable ones. The information from these key locations is also utilised to establish the postures in which the patient is lying in while they are being treated on the bed. The patient’s body motion and bodily expression are constantly monitored for any discomfort if present. The results of the experiments demonstrate that the suggested system is valuable since it achieves a true-positive rate of 95% while only yielding a false-positive rate of 4%.
Publisher
King Salman Center for Disability Research
Subject
General Medicine,Religious studies,Cultural Studies,Materials Chemistry,Economics and Econometrics,Media Technology,Forestry,General Medicine,General Medicine,General Medicine,General Materials Science,Energy Engineering and Power Technology,Fuel Technology,Psychiatry and Mental health,General Earth and Planetary Sciences,General Environmental Science
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